Personality Bias of Music Recommendation Algorithms

Recommender systems, like other tools that make use of machine learning, are known to create or increase certain biases. Earlier work has already unveiled different performance of recommender systems for different user groups, depending on gender, age, country, and consumption behavior. In this work, we study user bias in terms of another aspect, i.e., users’ personality. We investigate to which extent state-of-the-art recommendation algorithms yield different accuracy scores depending on the users’ personality traits. We focus on the music domain and create a dataset of Twitter users’ music consumption behavior and personality traits, measuring the latter in terms of the OCEAN model. Investigating recall@K and NDCG@K of the recommendation algorithms SLIM, embarrassingly shallow autoencoders for sparse data (EASE), and variational autoencoders for collaborative filtering (Mult-VAE) on this dataset, we find several significant differences in performance between user groups scoring high vs. groups scoring low on several personality traits.

[1]  Maria Soledad Pera,et al.  All The Cool Kids, How Do They Fit In?: Popularity and Demographic Biases in Recommender Evaluation and Effectiveness , 2018, FAT.

[2]  R. McCrae,et al.  An introduction to the five-factor model and its applications. , 1992, Journal of personality.

[3]  Katayoun Farrahi,et al.  On the Influence of User Characteristics on Music Recommendation Algorithms , 2015, ECIR.

[4]  Dominik Kowald,et al.  The Unfairness of Popularity Bias in Music Recommendation: A Reproducibility Study , 2019, ECIR.

[5]  Harald Steck,et al.  Embarrassingly Shallow Autoencoders for Sparse Data , 2019, WWW.

[6]  Nasim Sonboli,et al.  Balanced Neighborhoods for Multi-sided Fairness in Recommendation , 2018, FAT.

[7]  Toniann Pitassi,et al.  Fairness through awareness , 2011, ITCS '12.

[8]  Robin D. Burke,et al.  Multisided Fairness for Recommendation , 2017, ArXiv.

[9]  Matthew D. Hoffman,et al.  Variational Autoencoders for Collaborative Filtering , 2018, WWW.

[10]  Nava Tintarev,et al.  A Diversity Adjusting Strategy with Personality for Music Recommendation , 2018, IntRS@RecSys.

[11]  S. Gosling,et al.  PERSONALITY PROCESSES AND INDIVIDUAL DIFFERENCES The Do Re Mi’s of Everyday Life: The Structure and Personality Correlates of Music Preferences , 2003 .

[12]  Hsin-Chang Yang,et al.  Mining personality traits from social messages for game recommender systems , 2019, Knowl. Based Syst..

[13]  Markus Schedl,et al.  The Million Musical Tweet Dataset - What We Can Learn From Microblogs , 2013, ISMIR.

[14]  Markus Schedl,et al.  Investigating country-specific music preferences and music recommendation algorithms with the LFM-1b dataset , 2017, International Journal of Multimedia Information Retrieval.

[15]  Derek Bridge,et al.  Diversity, Serendipity, Novelty, and Coverage , 2016, ACM Trans. Interact. Intell. Syst..

[16]  Robin Burke,et al.  The Unfairness of Popularity Bias in Recommendation , 2019, RMSE@RecSys.

[17]  Stefanie Schurer,et al.  SEF Working paper : 12 / 2011 September 2011 The stability of big-five personality traits , 2011 .

[18]  A. Furnham,et al.  Personality and music: can traits explain how people use music in everyday life? , 2007, British journal of psychology.

[19]  A. Swartz MusicBrainz: A Semantic Web Service , 2002, IEEE Intell. Syst..

[20]  George Karypis,et al.  SLIM: Sparse Linear Methods for Top-N Recommender Systems , 2011, 2011 IEEE 11th International Conference on Data Mining.

[21]  Franco Turini,et al.  Discrimination-aware data mining , 2008, KDD.

[22]  Kiemute Oyibo,et al.  Personality Based Recipe Recommendation Using Recipe Network Graphs , 2018, HCI.

[23]  Òscar Celma,et al.  Music Recommendation and Discovery - The Long Tail, Long Fail, and Long Play in the Digital Music Space , 2010 .

[24]  Eva Zangerle,et al.  #nowplaying Music Dataset: Extracting Listening Behavior from Twitter , 2014, WISMM '14.

[25]  Bruce Ferwerda,et al.  Personality Traits and Music Genres: What Do People Prefer to Listen To? , 2017, UMAP.

[26]  Li Chen,et al.  Personality and Recommender Systems , 2015, Recommender Systems Handbook.

[27]  Iván Cantador,et al.  Alleviating the new user problem in collaborative filtering by exploiting personality information , 2016, User Modeling and User-Adapted Interaction.

[28]  Dietmar Jannach,et al.  A Troubling Analysis of Reproducibility and Progress in Recommender Systems Research , 2019, ACM Trans. Inf. Syst..

[29]  Christos Tjortjis,et al.  The 50/50 Recommender: A Method Incorporating Personality into Movie Recommender Systems , 2017, EANN.